智能背心和自适应算法用于生命体征和身体活动监测:可行性研究

Chiara Romano, D. Formica, M. Bravi, S. Miccinilli, S. Sterzi, E. Schena, C. Massaroni
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摘要

监测生理和生物力学变量在评估包括运动在内的几种情况下的人类健康方面发挥着重要作用。在这种情况下,人们对可穿戴设备的需求越来越大,这些设备可能提供有关运动员健康状况的异构信息,同时面临着满足运动员舒适度需求的挑战。在本文中,我们提出了一种低成本、不显眼的可穿戴智能背心,以及一种相关的自适应算法来估计心率(HR)、呼吸频率(RR)和步伐节奏等生理变量。我们的智能背心的传感部分由一个惯性测量单元(IMU)组成,该单元嵌入了一个加速度计(ACC)和一个陀螺仪(GYR),位于受试者的胸部。我们的设备在四名志愿者身上进行了测试,他们分别以不同的速度在休息时、走路和跑步。结果表明,在进行跑步运动前的休息姿势中,GYR在HR和RR估计方面优于ACC。运动前心率监测ACC和GYR的平均绝对误差(MAE)分别为1.22 bpm和0.39 bpm;运动前RR监测ACC和GYR的平均MAE分别为3.59次/min和0.36次/min。此外,在运动方案之后,结果非常有希望,使用ACC和GYR进行HR估计的平均MAE为0.24 bpm和0.25 bpm,在RR监测中ACC和GYR分别高达1.60呼吸/min和0.15呼吸/min。此外,我们的系统估计的步伐节奏与志愿者所需的所有协议阶段相匹配。所得结果支持了在日常生活和体育活动中利用智能背心内的传感器估算HR、RR和节奏的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Vest And Adaptive Algorithm For Vital Signs And Physical Activity Monitoring: A Feasibility Study
Monitoring physiological and biomechanical variables plays an important role in assessing human health in several scenarios, including sports. In this context, there is an increasing demand for wearable devices that can potentially provide heterogeneous information about the athlete’s health state, with the challenge of meeting the athlete’s needs in terms of comfort.In this paper, we propose a low-cost and unobtrusive wearable smart vest and a related adaptive algorithm to estimate both physiological variables such as heart rate (HR) and respiratory rate (RR) and the pace cadence. The sensing part of our smart vest consists of a single Inertial Measurement Unit (IMU) embedding both an accelerometer (ACC) and a gyroscope (GYR) positioned on the thorax of the subject. Our device was tested on four volunteers during both at-rest postures, walking and running at different speeds. Results show that the GYR outperforms the ACC for both HR and RR estimation during at-rest postures taken up before performing the running exercise. Average Mean absolute error (MAE) values of 1.22 bpm and 0.39 bpm have been achieved for ACC and GYR in HR monitoring in the pre-exercise phase; Average MAE of 3.59 breaths/min and 0.36 breaths/min have been achieved for ACC and GYR in RR monitoring in pre-exercise phase. Also, after the exercise protocol, the results are very promising, with average MAE of 0.24 bpm and 0.25 bpm using ACC and GYR for HR estimation and up to 1.60 breaths/min and 0.15 breaths/min for ACC and GYR in RR monitoring, respectively. Moreover, the pace cadence estimated by our system matches all the protocol phases required for the volunteer. The obtained results support the feasibility of estimating HR, RR, and cadence by using the sensors inside the smart vest in daily life and sports activities.
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